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Jonas Wallin. Photo.

Jonas Wallin

Senior lecturer, Director of third cycle studies, Department of Statistics

Jonas Wallin. Photo.

Gaussian Whittle–Matérn fields on metric graphs

Author

  • David Bolin
  • Alexandre B. Simas
  • Jonas Wallin

Summary, in English

We define a new class of Gaussian processes on compact metric graphs such as street or river networks. The proposed models, the Whittle–Matérn fields, are defined via a fractional stochastic differential equation on the compact metric graph and are a natural extension of Gaussian fields with Matérn covariance functions on Euclidean domains to the non-Euclidean metric graph setting. Existence of the processes, as well as some of their main properties, such as sample path regularity are derived. The model class in particular contains differentiable processes. To the best of our knowledge, this is the first construction of a differentiable Gaussian process on general compact metric graphs. Further, we prove an intrinsic property of these processes: that they do not change upon addition or removal of vertices with degree two. Finally, we obtain Karhunen–Loève expansions of the processes, provide numerical experiments, and compare them to Gaussian processes with isotropic covariance functions.

Department/s

  • Department of Statistics

Publishing year

2024-05

Language

English

Pages

1611-1639

Publication/Series

Bernoulli

Volume

30

Issue

2

Document type

Journal article

Publisher

Chapman and Hall

Topic

  • Probability Theory and Statistics

Keywords

  • Gaussian processes
  • networks
  • quantum graphs
  • stochastic partial differential equations

Status

Published

ISBN/ISSN/Other

  • ISSN: 1350-7265